Abstract

Categorizing national football teams by level is challenging because there is no standard of reference. Therefore, the self-organizing feature mapping network is used to solve this problem. In this paper, appropriate sample data were collected and an appropriate self-organizing feature mapping network model was built. After training, we obtained the classification results of 4 grades of 16 major Asian football national teams. As for the classification results, it is different to normalize the input data and not to normalize the input data. The classification results accord with our subjective cognition, which indicates the rationality of self-organizing feature mapping network in solving the classification problem of national football teams. In addition, the paper makes a detailed analysis of the classification results of the Chinese team and compares the gap between the Chinese team and the top Asian teams. It also analyses the impact of the normalization of input data on the classification results, taking Saudi Arabia as an example.

Highlights

  • The classification results accord with our subjective cognition, which indicates the rationality of selforganizing feature mapping network in solving the classification problem of national football teams

  • The paper makes a detailed analysis of the classification results of the Chinese team and compares the gap between the Chinese team and the top

  • The basic principle of SOFM is that when a certain type of mode is input, a node in the output layer wins by getting the maximum stimulus, and the nodes around the winning node are stimulated by lateral action

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Summary

A Clustering Application Scenario Based on an Improved

Received 10 May 2021; Revised 14 June 2021; Accepted 9 July 2021; Published 16 July 2021. Appropriate sample data were collected and an appropriate self-organizing feature mapping network model was built. We obtained the classification results of 4 grades of 16 major Asian football national teams. (i) We build a model based on improved self-organizing feature mapping network with the aim to cluster teams more reasonably. To make it clear, we give the specific model parameters and build process, and it includes the collection of data sets, the division of data sets, the normalization and inverse.

Motivation
Preliminaries
Supposed Model
Experiments
Conclusion and Future Work
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